必要预备知识 (Prerequisite Knowledge)

您将学到什么 (What you'll learn)

Explore case studies to understand the best use cases and business impact of applied deep reinforcement learning and see step-by-step how to build, train, and deploy models onto real-world systems

描述 (Description)

本讲话将用英语授课，同时会提供中文同声传译。中文版本摘要会在英文摘要下面给出。

Reinforcement learning is a powerful machine learning technique for solving problems in dynamic and adaptive environments. Combined with a simulation or digital twin, reinforcement learning can train models to automate or optimize the efficiency of industrial systems and processes such as robotics, manufacturing, energy, and supply chain.

But what comes after the simulation? Mark Hammond dives into two real-world case studies to show how deep reinforcement learning successfully automated the machine tuning of a Fortune 500 manufacturing system and optimized energy efficiency of a large-scale HVAC system. Mark details the end-to-end process of building, training, and deploying models and examines the business impact of each application.

Mark Hammond

Microsoft

Mark Hammond is cofounder and CEO at Bonsai. Mark has a deep passion for understanding how the mind works and has been thinking about AI throughout his career. He has held positions at Microsoft and numerous startups and in academia, including turns at Numenta and in the Yale Neuroscience Department. He holds a degree in computation and neural systems from Caltech.